INSTRUCTIONS
In this assignment, you will demonstrate your ability to select and implement the most appropriate statistical methods and machine learning algorithms based on the characteristics of provided datasets and specified analysis objectives. You will be presented with multiple datasets representing diverse types of data and analytical tasks. Your task will be to analyze each dataset, identify the most suitable methods for analysis, and implement them to achieve the specified objectives.
Assignment Objectives:
To assess your ability to critically evaluate data characteristics and analysis objectives.
To evaluate your proficiency in selecting and implementing appropriate statistical methods and machine learning algorithms.
To enhance your problem-solving skills in the context of data analysis and decision-making.
Instructions:
Dataset Selection:
You will be provided with a set of datasets representing various domains such as finance, healthcare, marketing, and social media.
Choose one dataset from the provided options for analysis.
Analysis Objectives:
Review the analysis objectives provided for the selected dataset. These objectives will define the goals you need to achieve through your analysis.
Method Selection:
Based on the characteristics of the selected dataset and the specified analysis objectives, identify the most suitable statistical methods and machine learning algorithms for analysis.
Justify your method selection by explaining how each chosen method aligns with the dataset characteristics and analysis goals.
Deliverables:
MS Powerpoint Presentation: A MS Powerpoint slide deck consisting of a cover slide, one slide for each of the datasets utilized, and a closing slide.
Method Selection Justification for five separate datasets of your choice.
Speaker’s Notes (150-300 words per slide) detailing your rationale for selecting the specific statistical methods and machine learning algorithms for analysis.
Above and Beyond: Implementation of selected method for one dataset using appropriate programming languages or tools (i.e., Python, R, MATLAB, or specialized software). Provide code/scripts used to implement the chosen methods, along with comments explaining steps taken in the speakers notes of the slide deck.
Video Presentation: Present your MS Powerpoint slidedeck in a 5 minute presentation discussing your analysis. (No more than 5 minutes will be graded – please stick to the time limit. This is an opportunity to present concise details about your analysis. Practice before submitting)
Above and Beyond: Not required, but if implementation of methods are done, submit the link to your work in GitHub and include a slide in the presentation analyzing the dataset.
Last Completed Projects
topic title | academic level | Writer | delivered |
---|